Regulation of craving for real-time fMRI neurofeedback based on individual classification.

IF 5.4 2区 生物学 Q1 BIOLOGY
Dong-Youl Kim, Jonathan Lisinski, Matthew Caton, Brooks Casas, Stephen LaConte, Pearl H Chiu
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引用次数: 0

Abstract

In previous real-time functional magnetic resonance imaging neurofeedback (rtfMRI-NF) studies on smoking craving, the focus has been on within-region activity or between-region connectivity, neglecting the potential predictive utility of broader network activity. Moreover, there is debate over the use and relative predictive power of individual-specific and group-level classifiers. This study aims to further advance rtfMRI-NF for substance use disorders by using whole-brain rtfMRI-NF to assess smoking craving-related brain patterns, evaluate the performance of group-level or individual-level classification (n = 31) and evaluate the performance of an optimized classifier across repeated NF runs. Using real-time individual-level classifiers derived from whole-brain support vector machines, we found that classification accuracy between crave and no-crave conditions and between repeated NF runs increased across repeated runs at both individual and group levels. In addition, individual-level accuracy was significantly greater than group-level accuracy, highlighting the potential increased utility of an individually trained whole-brain classifier for volitional control over brain patterns to regulate smoking craving. This study provides evidence supporting the feasibility of using whole-brain rtfMRI-NF to modulate smoking craving-related brain responses and the potential for learning individual strategies through optimization across repeated feedback runs. This article is part of the theme issue 'Neurofeedback: new territories and neurocognitive mechanisms of endogenous neuromodulation'.

基于个体分类的实时 fMRI 神经反馈渴求调节。
在以往关于吸烟渴求的实时功能磁共振成像神经反馈(rtfMRI-NF)研究中,重点一直放在区域内活动或区域间连接上,而忽视了更广泛的网络活动的潜在预测作用。此外,关于个体特异性和群体水平分类器的使用和相对预测能力还存在争议。本研究旨在通过使用全脑 rtfMRI-NF 评估与吸烟渴求相关的大脑模式,评估群体级或个体级分类的性能(n = 31),并评估优化分类器在重复 NF 运行中的性能,从而进一步推动 rtfMRI-NF 在药物使用障碍方面的应用。通过使用源自全脑支持向量机的实时个体水平分类器,我们发现在个体和群体水平上,渴望与非渴望条件之间以及重复 NF 运行之间的分类准确率在重复运行中均有所提高。此外,个体水平的准确性明显高于群体水平的准确性,这突出表明了个体训练的全脑分类器在自愿控制大脑模式以调节吸烟渴求方面的潜在效用。这项研究为使用全脑rtfMRI-NF调节与吸烟渴求相关的大脑反应的可行性以及通过反复反馈运行优化学习个体策略的潜力提供了证据支持。本文是 "神经反馈:内源性神经调节的新领域和神经认知机制 "主题期刊的一部分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
11.80
自引率
1.60%
发文量
365
审稿时长
3 months
期刊介绍: The journal publishes topics across the life sciences. As long as the core subject lies within the biological sciences, some issues may also include content crossing into other areas such as the physical sciences, social sciences, biophysics, policy, economics etc. Issues generally sit within four broad areas (although many issues sit across these areas): Organismal, environmental and evolutionary biology Neuroscience and cognition Cellular, molecular and developmental biology Health and disease.
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